基于agent的产品驱动生产动态调度模型

IF 1.9 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Brazilian Journal of Operations & Production Management Pub Date : 2020-01-01 DOI:10.14488/bjopm.2020.044
J. T. D. G. A. E. A. Campos, J. Blumelova, H. Lepikson, F. G. Freires
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引用次数: 4

摘要

目的:本研究为产品驱动生产的动态调度提供了独特的细节层次和原创架构的具体解决方案。设计/方法论/方法:调度问题求解MAS的设计过程分为三个步骤:参与调度的实体的agent封装,包括agent的概念和承担的责任;agent网络的系统架构和拓扑;单个agent决策方案的详细设计。结果:生产过程发生在动态环境中,需要对大量的实时事件做出反应,因此,为了解决产品驱动生产环境下的动态柔性作业车间调度问题,设计并实现了一种新的基于agent的模型。调查的局限性:设计的模型计数简单的代理行为的条件动作规则。这些智能体可以被更复杂的智能体所取代,比如基于效用的智能体或学习型智能体。实现的协调机制也保证了调度问题的全局视图。实际意义:通过对实际生产场景的模拟,期望证明如何将智能引入较低层次的控制系统以用于动态调度的特定解决方案的适用性。在阐述理论基础的基础上,确定了适合或广泛应用于该模型设计的原则。原创性/价值:本研究为产品驱动生产的多智能体动态调度提供了特定的实时架构,具有独特的细节水平和场景分析。
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Agent-based dynamic scheduling model for product-driven production
Goal: This research provides specific solution for dynamic scheduling of product-driven production with unique level of detail and original architecture. Design / Methodology / Approach: Design process of scheduling problem-solving MAS is divided into three steps: agent encapsulation of entities participating in scheduling, including concept of agents and responsibilities they assume, system architecture and topology of the agents network, detailed design of decision scheme of individual agents. Results: Production processes take place in dynamic environment and have to react to numerous real-time events, hence reschedule the production by a new design and implement agent-based model in order to solve dynamic flexible job shop scheduling problem in product-driven production environment. Limitations of the investigation: Designed model counts with simple agents behaving on conditionaction rules. These agents could be replaced by more sophisticated types of agents such as utilitybased or learning agents. Also the implemented coordination mechanism ensuring global view on the scheduling problem is rather simple. Practical implications: Via simulations of realistic production scenarios it was expected to prove an applicability of specific solution of how bringing the intelligence to the lower levels of control system may be used in dynamic scheduling. Based on elaboration of theoretical basis, principles were identified as suitable or widely used in design of such model. Originality / Value: This research provides specific real-time architecture for a multi-agents dynamic scheduling of product-driven production with unique level of detail and scenarios analysis.
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来源期刊
Brazilian Journal of Operations & Production Management
Brazilian Journal of Operations & Production Management OPERATIONS RESEARCH & MANAGEMENT SCIENCE-
CiteScore
2.90
自引率
9.10%
发文量
27
审稿时长
44 weeks
期刊最新文献
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